Spaces:
Build error
Build error
| # v1: initial release | |
| # v2: add open and save folder icons | |
| # v3: Add new Utilities tab for Dreambooth folder preparation | |
| # v3.1: Adding captionning of images to utilities | |
| import gradio as gr | |
| import json | |
| import math | |
| import os | |
| import subprocess | |
| import pathlib | |
| import argparse | |
| from datetime import datetime | |
| from library.common_gui import ( | |
| get_file_path, | |
| get_saveasfile_path, | |
| color_aug_changed, | |
| save_inference_file, | |
| run_cmd_advanced_training, | |
| run_cmd_training, | |
| update_my_data, | |
| check_if_model_exist, | |
| output_message, | |
| verify_image_folder_pattern, | |
| SaveConfigFile, | |
| save_to_file | |
| ) | |
| from library.class_configuration_file import ConfigurationFile | |
| from library.class_source_model import SourceModel | |
| from library.class_basic_training import BasicTraining | |
| from library.class_advanced_training import AdvancedTraining | |
| from library.class_folders import Folders | |
| from library.tensorboard_gui import ( | |
| gradio_tensorboard, | |
| start_tensorboard, | |
| stop_tensorboard, | |
| ) | |
| from library.dreambooth_folder_creation_gui import ( | |
| gradio_dreambooth_folder_creation_tab, | |
| ) | |
| from library.utilities import utilities_tab | |
| from library.class_sample_images import SampleImages, run_cmd_sample | |
| from library.custom_logging import setup_logging | |
| # Set up logging | |
| log = setup_logging() | |
| def save_configuration( | |
| save_as, | |
| file_path, | |
| pretrained_model_name_or_path, | |
| v2, | |
| v_parameterization, | |
| sdxl, | |
| logging_dir, | |
| train_data_dir, | |
| reg_data_dir, | |
| output_dir, | |
| max_resolution, | |
| learning_rate, | |
| lr_scheduler, | |
| lr_warmup, | |
| train_batch_size, | |
| epoch, | |
| save_every_n_epochs, | |
| mixed_precision, | |
| save_precision, | |
| seed, | |
| num_cpu_threads_per_process, | |
| cache_latents, | |
| cache_latents_to_disk, | |
| caption_extension, | |
| enable_bucket, | |
| gradient_checkpointing, | |
| full_fp16, | |
| no_token_padding, | |
| stop_text_encoder_training, | |
| # use_8bit_adam, | |
| xformers, | |
| save_model_as, | |
| shuffle_caption, | |
| save_state, | |
| resume, | |
| prior_loss_weight, | |
| color_aug, | |
| flip_aug, | |
| clip_skip, | |
| vae, | |
| output_name, | |
| max_token_length, | |
| max_train_epochs, | |
| max_data_loader_n_workers, | |
| mem_eff_attn, | |
| gradient_accumulation_steps, | |
| model_list, | |
| keep_tokens, | |
| persistent_data_loader_workers, | |
| bucket_no_upscale, | |
| random_crop, | |
| bucket_reso_steps, | |
| caption_dropout_every_n_epochs, | |
| caption_dropout_rate, | |
| optimizer, | |
| optimizer_args, | |
| noise_offset_type, | |
| noise_offset, | |
| adaptive_noise_scale, | |
| multires_noise_iterations, | |
| multires_noise_discount, | |
| sample_every_n_steps, | |
| sample_every_n_epochs, | |
| sample_sampler, | |
| sample_prompts, | |
| additional_parameters, | |
| vae_batch_size, | |
| min_snr_gamma, | |
| weighted_captions, | |
| save_every_n_steps, | |
| save_last_n_steps, | |
| save_last_n_steps_state, | |
| use_wandb, | |
| wandb_api_key, | |
| scale_v_pred_loss_like_noise_pred, | |
| min_timestep, | |
| max_timestep, | |
| ): | |
| # Get list of function parameters and values | |
| parameters = list(locals().items()) | |
| original_file_path = file_path | |
| save_as_bool = True if save_as.get('label') == 'True' else False | |
| if save_as_bool: | |
| log.info('Save as...') | |
| file_path = get_saveasfile_path(file_path) | |
| else: | |
| log.info('Save...') | |
| if file_path == None or file_path == '': | |
| file_path = get_saveasfile_path(file_path) | |
| if file_path == None or file_path == '': | |
| return original_file_path # In case a file_path was provided and the user decide to cancel the open action | |
| # Extract the destination directory from the file path | |
| destination_directory = os.path.dirname(file_path) | |
| # Create the destination directory if it doesn't exist | |
| if not os.path.exists(destination_directory): | |
| os.makedirs(destination_directory) | |
| SaveConfigFile(parameters=parameters, file_path=file_path, exclusion=['file_path', 'save_as']) | |
| return file_path | |
| def open_configuration( | |
| ask_for_file, | |
| file_path, | |
| pretrained_model_name_or_path, | |
| v2, | |
| v_parameterization, | |
| sdxl, | |
| logging_dir, | |
| train_data_dir, | |
| reg_data_dir, | |
| output_dir, | |
| max_resolution, | |
| learning_rate, | |
| lr_scheduler, | |
| lr_warmup, | |
| train_batch_size, | |
| epoch, | |
| save_every_n_epochs, | |
| mixed_precision, | |
| save_precision, | |
| seed, | |
| num_cpu_threads_per_process, | |
| cache_latents, | |
| cache_latents_to_disk, | |
| caption_extension, | |
| enable_bucket, | |
| gradient_checkpointing, | |
| full_fp16, | |
| no_token_padding, | |
| stop_text_encoder_training, | |
| # use_8bit_adam, | |
| xformers, | |
| save_model_as, | |
| shuffle_caption, | |
| save_state, | |
| resume, | |
| prior_loss_weight, | |
| color_aug, | |
| flip_aug, | |
| clip_skip, | |
| vae, | |
| output_name, | |
| max_token_length, | |
| max_train_epochs, | |
| max_data_loader_n_workers, | |
| mem_eff_attn, | |
| gradient_accumulation_steps, | |
| model_list, | |
| keep_tokens, | |
| persistent_data_loader_workers, | |
| bucket_no_upscale, | |
| random_crop, | |
| bucket_reso_steps, | |
| caption_dropout_every_n_epochs, | |
| caption_dropout_rate, | |
| optimizer, | |
| optimizer_args, | |
| noise_offset_type, | |
| noise_offset, | |
| adaptive_noise_scale, | |
| multires_noise_iterations, | |
| multires_noise_discount, | |
| sample_every_n_steps, | |
| sample_every_n_epochs, | |
| sample_sampler, | |
| sample_prompts, | |
| additional_parameters, | |
| vae_batch_size, | |
| min_snr_gamma, | |
| weighted_captions, | |
| save_every_n_steps, | |
| save_last_n_steps, | |
| save_last_n_steps_state, | |
| use_wandb, | |
| wandb_api_key, | |
| scale_v_pred_loss_like_noise_pred, | |
| min_timestep, | |
| max_timestep, | |
| ): | |
| # Get list of function parameters and values | |
| parameters = list(locals().items()) | |
| ask_for_file = True if ask_for_file.get('label') == 'True' else False | |
| original_file_path = file_path | |
| if ask_for_file: | |
| file_path = get_file_path(file_path) | |
| if not file_path == '' and not file_path == None: | |
| # load variables from JSON file | |
| with open(file_path, 'r') as f: | |
| my_data = json.load(f) | |
| log.info('Loading config...') | |
| # Update values to fix deprecated use_8bit_adam checkbox and set appropriate optimizer if it is set to True | |
| my_data = update_my_data(my_data) | |
| else: | |
| file_path = original_file_path # In case a file_path was provided and the user decide to cancel the open action | |
| my_data = {} | |
| values = [file_path] | |
| for key, value in parameters: | |
| # Set the value in the dictionary to the corresponding value in `my_data`, or the default value if not found | |
| if not key in ['ask_for_file', 'file_path']: | |
| values.append(my_data.get(key, value)) | |
| return tuple(values) | |
| def train_model( | |
| headless, | |
| print_only, | |
| pretrained_model_name_or_path, | |
| v2, | |
| v_parameterization, | |
| sdxl, | |
| logging_dir, | |
| train_data_dir, | |
| reg_data_dir, | |
| output_dir, | |
| max_resolution, | |
| learning_rate, | |
| lr_scheduler, | |
| lr_warmup, | |
| train_batch_size, | |
| epoch, | |
| save_every_n_epochs, | |
| mixed_precision, | |
| save_precision, | |
| seed, | |
| num_cpu_threads_per_process, | |
| cache_latents, | |
| cache_latents_to_disk, | |
| caption_extension, | |
| enable_bucket, | |
| gradient_checkpointing, | |
| full_fp16, | |
| no_token_padding, | |
| stop_text_encoder_training_pct, | |
| # use_8bit_adam, | |
| xformers, | |
| save_model_as, | |
| shuffle_caption, | |
| save_state, | |
| resume, | |
| prior_loss_weight, | |
| color_aug, | |
| flip_aug, | |
| clip_skip, | |
| vae, | |
| output_name, | |
| max_token_length, | |
| max_train_epochs, | |
| max_data_loader_n_workers, | |
| mem_eff_attn, | |
| gradient_accumulation_steps, | |
| model_list, # Keep this. Yes, it is unused here but required given the common list used | |
| keep_tokens, | |
| persistent_data_loader_workers, | |
| bucket_no_upscale, | |
| random_crop, | |
| bucket_reso_steps, | |
| caption_dropout_every_n_epochs, | |
| caption_dropout_rate, | |
| optimizer, | |
| optimizer_args, | |
| noise_offset_type, | |
| noise_offset, | |
| adaptive_noise_scale, | |
| multires_noise_iterations, | |
| multires_noise_discount, | |
| sample_every_n_steps, | |
| sample_every_n_epochs, | |
| sample_sampler, | |
| sample_prompts, | |
| additional_parameters, | |
| vae_batch_size, | |
| min_snr_gamma, | |
| weighted_captions, | |
| save_every_n_steps, | |
| save_last_n_steps, | |
| save_last_n_steps_state, | |
| use_wandb, | |
| wandb_api_key, | |
| scale_v_pred_loss_like_noise_pred, | |
| min_timestep, | |
| max_timestep, | |
| ): | |
| # Get list of function parameters and values | |
| parameters = list(locals().items()) | |
| print_only_bool = True if print_only.get('label') == 'True' else False | |
| log.info(f'Start training Dreambooth...') | |
| headless_bool = True if headless.get('label') == 'True' else False | |
| if pretrained_model_name_or_path == '': | |
| output_message( | |
| msg='Source model information is missing', headless=headless_bool | |
| ) | |
| return | |
| if train_data_dir == '': | |
| output_message( | |
| msg='Image folder path is missing', headless=headless_bool | |
| ) | |
| return | |
| if not os.path.exists(train_data_dir): | |
| output_message( | |
| msg='Image folder does not exist', headless=headless_bool | |
| ) | |
| return | |
| if not verify_image_folder_pattern(train_data_dir): | |
| return | |
| if reg_data_dir != '': | |
| if not os.path.exists(reg_data_dir): | |
| output_message( | |
| msg='Regularisation folder does not exist', | |
| headless=headless_bool, | |
| ) | |
| return | |
| if not verify_image_folder_pattern(reg_data_dir): | |
| return | |
| if output_dir == '': | |
| output_message( | |
| msg='Output folder path is missing', headless=headless_bool | |
| ) | |
| return | |
| if check_if_model_exist( | |
| output_name, output_dir, save_model_as, headless=headless_bool | |
| ): | |
| return | |
| if sdxl: | |
| output_message( | |
| msg='TI training is not compatible with an SDXL model.', | |
| headless=headless_bool, | |
| ) | |
| return | |
| # if optimizer == 'Adafactor' and lr_warmup != '0': | |
| # output_message( | |
| # msg="Warning: lr_scheduler is set to 'Adafactor', so 'LR warmup (% of steps)' will be considered 0.", | |
| # title='Warning', | |
| # headless=headless_bool, | |
| # ) | |
| # lr_warmup = '0' | |
| # Get a list of all subfolders in train_data_dir, excluding hidden folders | |
| subfolders = [ | |
| f | |
| for f in os.listdir(train_data_dir) | |
| if os.path.isdir(os.path.join(train_data_dir, f)) | |
| and not f.startswith('.') | |
| ] | |
| # Check if subfolders are present. If not let the user know and return | |
| if not subfolders: | |
| log.info( | |
| f"No {subfolders} were found in train_data_dir can't train..." | |
| ) | |
| return | |
| total_steps = 0 | |
| # Loop through each subfolder and extract the number of repeats | |
| for folder in subfolders: | |
| # Extract the number of repeats from the folder name | |
| try: | |
| repeats = int(folder.split('_')[0]) | |
| except ValueError: | |
| log.info( | |
| f"Subfolder {folder} does not have a proper repeat value, please correct the name or remove it... can't train..." | |
| ) | |
| continue | |
| # Count the number of images in the folder | |
| num_images = len( | |
| [ | |
| f | |
| for f, lower_f in ( | |
| (file, file.lower()) | |
| for file in os.listdir( | |
| os.path.join(train_data_dir, folder) | |
| ) | |
| ) | |
| if lower_f.endswith(('.jpg', '.jpeg', '.png', '.webp')) | |
| ] | |
| ) | |
| if num_images == 0: | |
| log.info(f'{folder} folder contain no images, skipping...') | |
| else: | |
| # Calculate the total number of steps for this folder | |
| steps = repeats * num_images | |
| total_steps += steps | |
| # Print the result | |
| log.info(f'Folder {folder} : steps {steps}') | |
| if total_steps == 0: | |
| log.info( | |
| f'No images were found in folder {train_data_dir}... please rectify!' | |
| ) | |
| return | |
| # Print the result | |
| # log.info(f"{total_steps} total steps") | |
| if reg_data_dir == '': | |
| reg_factor = 1 | |
| else: | |
| log.info( | |
| f'Regularisation images are used... Will double the number of steps required...' | |
| ) | |
| reg_factor = 2 | |
| # calculate max_train_steps | |
| max_train_steps = int( | |
| math.ceil( | |
| float(total_steps) | |
| / int(train_batch_size) | |
| / int(gradient_accumulation_steps) | |
| * int(epoch) | |
| * int(reg_factor) | |
| ) | |
| ) | |
| log.info(f'max_train_steps = {max_train_steps}') | |
| # calculate stop encoder training | |
| if int(stop_text_encoder_training_pct) == -1: | |
| stop_text_encoder_training = -1 | |
| elif stop_text_encoder_training_pct == None: | |
| stop_text_encoder_training = 0 | |
| else: | |
| stop_text_encoder_training = math.ceil( | |
| float(max_train_steps) / 100 * int(stop_text_encoder_training_pct) | |
| ) | |
| log.info(f'stop_text_encoder_training = {stop_text_encoder_training}') | |
| lr_warmup_steps = round(float(int(lr_warmup) * int(max_train_steps) / 100)) | |
| log.info(f'lr_warmup_steps = {lr_warmup_steps}') | |
| run_cmd = f'accelerate launch --num_cpu_threads_per_process={num_cpu_threads_per_process} "train_db.py"' | |
| if v2: | |
| run_cmd += ' --v2' | |
| if v_parameterization: | |
| run_cmd += ' --v_parameterization' | |
| if enable_bucket: | |
| run_cmd += ' --enable_bucket' | |
| if no_token_padding: | |
| run_cmd += ' --no_token_padding' | |
| if weighted_captions: | |
| run_cmd += ' --weighted_captions' | |
| run_cmd += ( | |
| f' --pretrained_model_name_or_path="{pretrained_model_name_or_path}"' | |
| ) | |
| run_cmd += f' --train_data_dir="{train_data_dir}"' | |
| if len(reg_data_dir): | |
| run_cmd += f' --reg_data_dir="{reg_data_dir}"' | |
| run_cmd += f' --resolution="{max_resolution}"' | |
| run_cmd += f' --output_dir="{output_dir}"' | |
| if not logging_dir == '': | |
| run_cmd += f' --logging_dir="{logging_dir}"' | |
| if not stop_text_encoder_training == 0: | |
| run_cmd += ( | |
| f' --stop_text_encoder_training={stop_text_encoder_training}' | |
| ) | |
| if not save_model_as == 'same as source model': | |
| run_cmd += f' --save_model_as={save_model_as}' | |
| # if not resume == '': | |
| # run_cmd += f' --resume={resume}' | |
| if not float(prior_loss_weight) == 1.0: | |
| run_cmd += f' --prior_loss_weight={prior_loss_weight}' | |
| if not vae == '': | |
| run_cmd += f' --vae="{vae}"' | |
| if not output_name == '': | |
| run_cmd += f' --output_name="{output_name}"' | |
| if int(max_token_length) > 75: | |
| run_cmd += f' --max_token_length={max_token_length}' | |
| if not max_train_epochs == '': | |
| run_cmd += f' --max_train_epochs="{max_train_epochs}"' | |
| if not max_data_loader_n_workers == '': | |
| run_cmd += ( | |
| f' --max_data_loader_n_workers="{max_data_loader_n_workers}"' | |
| ) | |
| if int(gradient_accumulation_steps) > 1: | |
| run_cmd += f' --gradient_accumulation_steps={int(gradient_accumulation_steps)}' | |
| run_cmd += run_cmd_training( | |
| learning_rate=learning_rate, | |
| lr_scheduler=lr_scheduler, | |
| lr_warmup_steps=lr_warmup_steps, | |
| train_batch_size=train_batch_size, | |
| max_train_steps=max_train_steps, | |
| save_every_n_epochs=save_every_n_epochs, | |
| mixed_precision=mixed_precision, | |
| save_precision=save_precision, | |
| seed=seed, | |
| caption_extension=caption_extension, | |
| cache_latents=cache_latents, | |
| cache_latents_to_disk=cache_latents_to_disk, | |
| optimizer=optimizer, | |
| optimizer_args=optimizer_args, | |
| ) | |
| run_cmd += run_cmd_advanced_training( | |
| max_train_epochs=max_train_epochs, | |
| max_data_loader_n_workers=max_data_loader_n_workers, | |
| max_token_length=max_token_length, | |
| resume=resume, | |
| save_state=save_state, | |
| mem_eff_attn=mem_eff_attn, | |
| clip_skip=clip_skip, | |
| flip_aug=flip_aug, | |
| color_aug=color_aug, | |
| shuffle_caption=shuffle_caption, | |
| gradient_checkpointing=gradient_checkpointing, | |
| full_fp16=full_fp16, | |
| xformers=xformers, | |
| keep_tokens=keep_tokens, | |
| persistent_data_loader_workers=persistent_data_loader_workers, | |
| bucket_no_upscale=bucket_no_upscale, | |
| random_crop=random_crop, | |
| bucket_reso_steps=bucket_reso_steps, | |
| caption_dropout_every_n_epochs=caption_dropout_every_n_epochs, | |
| caption_dropout_rate=caption_dropout_rate, | |
| noise_offset_type=noise_offset_type, | |
| noise_offset=noise_offset, | |
| adaptive_noise_scale=adaptive_noise_scale, | |
| multires_noise_iterations=multires_noise_iterations, | |
| multires_noise_discount=multires_noise_discount, | |
| additional_parameters=additional_parameters, | |
| vae_batch_size=vae_batch_size, | |
| min_snr_gamma=min_snr_gamma, | |
| save_every_n_steps=save_every_n_steps, | |
| save_last_n_steps=save_last_n_steps, | |
| save_last_n_steps_state=save_last_n_steps_state, | |
| use_wandb=use_wandb, | |
| wandb_api_key=wandb_api_key, | |
| scale_v_pred_loss_like_noise_pred=scale_v_pred_loss_like_noise_pred, | |
| min_timestep=min_timestep, | |
| max_timestep=max_timestep, | |
| ) | |
| run_cmd += run_cmd_sample( | |
| sample_every_n_steps, | |
| sample_every_n_epochs, | |
| sample_sampler, | |
| sample_prompts, | |
| output_dir, | |
| ) | |
| if print_only_bool: | |
| log.warning( | |
| 'Here is the trainer command as a reference. It will not be executed:\n' | |
| ) | |
| print(run_cmd) | |
| save_to_file(run_cmd) | |
| else: | |
| # Saving config file for model | |
| current_datetime = datetime.now() | |
| formatted_datetime = current_datetime.strftime("%Y%m%d-%H%M%S") | |
| file_path = os.path.join(output_dir, f'{output_name}_{formatted_datetime}.json') | |
| log.info(f'Saving training config to {file_path}...') | |
| SaveConfigFile(parameters=parameters, file_path=file_path, exclusion=['file_path', 'save_as', 'headless', 'print_only']) | |
| log.info(run_cmd) | |
| # Run the command | |
| if os.name == 'posix': | |
| os.system(run_cmd) | |
| else: | |
| subprocess.run(run_cmd) | |
| # check if output_dir/last is a folder... therefore it is a diffuser model | |
| last_dir = pathlib.Path(f'{output_dir}/{output_name}') | |
| if not last_dir.is_dir(): | |
| # Copy inference model for v2 if required | |
| save_inference_file( | |
| output_dir, v2, v_parameterization, output_name | |
| ) | |
| def dreambooth_tab( | |
| # train_data_dir=gr.Textbox(), | |
| # reg_data_dir=gr.Textbox(), | |
| # output_dir=gr.Textbox(), | |
| # logging_dir=gr.Textbox(), | |
| headless=False, | |
| ): | |
| dummy_db_true = gr.Label(value=True, visible=False) | |
| dummy_db_false = gr.Label(value=False, visible=False) | |
| dummy_headless = gr.Label(value=headless, visible=False) | |
| with gr.Tab('Training'): | |
| gr.Markdown('Train a custom model using kohya dreambooth python code...') | |
| # Setup Configuration Files Gradio | |
| config = ConfigurationFile(headless) | |
| source_model = SourceModel(headless=headless) | |
| with gr.Tab('Folders'): | |
| folders = Folders(headless=headless) | |
| with gr.Tab('Parameters'): | |
| basic_training = BasicTraining( | |
| learning_rate_value='1e-5', | |
| lr_scheduler_value='cosine', | |
| lr_warmup_value='10', | |
| ) | |
| with gr.Accordion('Advanced Configuration', open=False): | |
| advanced_training = AdvancedTraining(headless=headless) | |
| advanced_training.color_aug.change( | |
| color_aug_changed, | |
| inputs=[advanced_training.color_aug], | |
| outputs=[basic_training.cache_latents], | |
| ) | |
| sample = SampleImages() | |
| with gr.Tab('Tools'): | |
| gr.Markdown( | |
| 'This section provide Dreambooth tools to help setup your dataset...' | |
| ) | |
| gradio_dreambooth_folder_creation_tab( | |
| train_data_dir_input=folders.train_data_dir, | |
| reg_data_dir_input=folders.reg_data_dir, | |
| output_dir_input=folders.output_dir, | |
| logging_dir_input=folders.logging_dir, | |
| headless=headless, | |
| ) | |
| button_run = gr.Button('Train model', variant='primary') | |
| button_print = gr.Button('Print training command') | |
| # Setup gradio tensorboard buttons | |
| button_start_tensorboard, button_stop_tensorboard = gradio_tensorboard() | |
| button_start_tensorboard.click( | |
| start_tensorboard, | |
| inputs=folders.logging_dir, | |
| show_progress=False, | |
| ) | |
| button_stop_tensorboard.click( | |
| stop_tensorboard, | |
| show_progress=False, | |
| ) | |
| settings_list = [ | |
| source_model.pretrained_model_name_or_path, | |
| source_model.v2, | |
| source_model.v_parameterization, | |
| source_model.sdxl_checkbox, | |
| folders.logging_dir, | |
| folders.train_data_dir, | |
| folders.reg_data_dir, | |
| folders.output_dir, | |
| basic_training.max_resolution, | |
| basic_training.learning_rate, | |
| basic_training.lr_scheduler, | |
| basic_training.lr_warmup, | |
| basic_training.train_batch_size, | |
| basic_training.epoch, | |
| basic_training.save_every_n_epochs, | |
| basic_training.mixed_precision, | |
| basic_training.save_precision, | |
| basic_training.seed, | |
| basic_training.num_cpu_threads_per_process, | |
| basic_training.cache_latents, | |
| basic_training.cache_latents_to_disk, | |
| basic_training.caption_extension, | |
| basic_training.enable_bucket, | |
| advanced_training.gradient_checkpointing, | |
| advanced_training.full_fp16, | |
| advanced_training.no_token_padding, | |
| basic_training.stop_text_encoder_training, | |
| advanced_training.xformers, | |
| source_model.save_model_as, | |
| advanced_training.shuffle_caption, | |
| advanced_training.save_state, | |
| advanced_training.resume, | |
| advanced_training.prior_loss_weight, | |
| advanced_training.color_aug, | |
| advanced_training.flip_aug, | |
| advanced_training.clip_skip, | |
| advanced_training.vae, | |
| folders.output_name, | |
| advanced_training.max_token_length, | |
| advanced_training.max_train_epochs, | |
| advanced_training.max_data_loader_n_workers, | |
| advanced_training.mem_eff_attn, | |
| advanced_training.gradient_accumulation_steps, | |
| source_model.model_list, | |
| advanced_training.keep_tokens, | |
| advanced_training.persistent_data_loader_workers, | |
| advanced_training.bucket_no_upscale, | |
| advanced_training.random_crop, | |
| advanced_training.bucket_reso_steps, | |
| advanced_training.caption_dropout_every_n_epochs, | |
| advanced_training.caption_dropout_rate, | |
| basic_training.optimizer, | |
| basic_training.optimizer_args, | |
| advanced_training.noise_offset_type, | |
| advanced_training.noise_offset, | |
| advanced_training.adaptive_noise_scale, | |
| advanced_training.multires_noise_iterations, | |
| advanced_training.multires_noise_discount, | |
| sample.sample_every_n_steps, | |
| sample.sample_every_n_epochs, | |
| sample.sample_sampler, | |
| sample.sample_prompts, | |
| advanced_training.additional_parameters, | |
| advanced_training.vae_batch_size, | |
| advanced_training.min_snr_gamma, | |
| advanced_training.weighted_captions, | |
| advanced_training.save_every_n_steps, | |
| advanced_training.save_last_n_steps, | |
| advanced_training.save_last_n_steps_state, | |
| advanced_training.use_wandb, | |
| advanced_training.wandb_api_key, | |
| advanced_training.scale_v_pred_loss_like_noise_pred, | |
| advanced_training.min_timestep, | |
| advanced_training.max_timestep, | |
| ] | |
| config.button_open_config.click( | |
| open_configuration, | |
| inputs=[dummy_db_true, config.config_file_name] + settings_list, | |
| outputs=[config.config_file_name] + settings_list, | |
| show_progress=False, | |
| ) | |
| config.button_load_config.click( | |
| open_configuration, | |
| inputs=[dummy_db_false, config.config_file_name] + settings_list, | |
| outputs=[config.config_file_name] + settings_list, | |
| show_progress=False, | |
| ) | |
| config.button_save_config.click( | |
| save_configuration, | |
| inputs=[dummy_db_false, config.config_file_name] + settings_list, | |
| outputs=[config.config_file_name], | |
| show_progress=False, | |
| ) | |
| config.button_save_as_config.click( | |
| save_configuration, | |
| inputs=[dummy_db_true, config.config_file_name] + settings_list, | |
| outputs=[config.config_file_name], | |
| show_progress=False, | |
| ) | |
| button_run.click( | |
| train_model, | |
| inputs=[dummy_headless] + [dummy_db_false] + settings_list, | |
| show_progress=False, | |
| ) | |
| button_print.click( | |
| train_model, | |
| inputs=[dummy_headless] + [dummy_db_true] + settings_list, | |
| show_progress=False, | |
| ) | |
| return ( | |
| folders.train_data_dir, | |
| folders.reg_data_dir, | |
| folders.output_dir, | |
| folders.logging_dir, | |
| ) | |
| def UI(**kwargs): | |
| css = '' | |
| headless = kwargs.get('headless', False) | |
| log.info(f'headless: {headless}') | |
| if os.path.exists('./style.css'): | |
| with open(os.path.join('./style.css'), 'r', encoding='utf8') as file: | |
| log.info('Load CSS...') | |
| css += file.read() + '\n' | |
| interface = gr.Blocks( | |
| css=css, title='Kohya_ss GUI', theme=gr.themes.Default() | |
| ) | |
| with interface: | |
| with gr.Tab('Dreambooth'): | |
| ( | |
| train_data_dir_input, | |
| reg_data_dir_input, | |
| output_dir_input, | |
| logging_dir_input, | |
| ) = dreambooth_tab(headless=headless) | |
| with gr.Tab('Utilities'): | |
| utilities_tab( | |
| train_data_dir_input=train_data_dir_input, | |
| reg_data_dir_input=reg_data_dir_input, | |
| output_dir_input=output_dir_input, | |
| logging_dir_input=logging_dir_input, | |
| enable_copy_info_button=True, | |
| headless=headless, | |
| ) | |
| # Show the interface | |
| launch_kwargs = {} | |
| username = kwargs.get('username') | |
| password = kwargs.get('password') | |
| server_port = kwargs.get('server_port', 0) | |
| inbrowser = kwargs.get('inbrowser', False) | |
| share = kwargs.get('share', False) | |
| server_name = kwargs.get('listen') | |
| launch_kwargs['server_name'] = server_name | |
| if username and password: | |
| launch_kwargs['auth'] = (username, password) | |
| if server_port > 0: | |
| launch_kwargs['server_port'] = server_port | |
| if inbrowser: | |
| launch_kwargs['inbrowser'] = inbrowser | |
| if share: | |
| launch_kwargs['share'] = share | |
| interface.launch(**launch_kwargs) | |
| if __name__ == '__main__': | |
| # torch.cuda.set_per_process_memory_fraction(0.48) | |
| parser = argparse.ArgumentParser() | |
| parser.add_argument( | |
| '--listen', | |
| type=str, | |
| default='127.0.0.1', | |
| help='IP to listen on for connections to Gradio', | |
| ) | |
| parser.add_argument( | |
| '--username', type=str, default='', help='Username for authentication' | |
| ) | |
| parser.add_argument( | |
| '--password', type=str, default='', help='Password for authentication' | |
| ) | |
| parser.add_argument( | |
| '--server_port', | |
| type=int, | |
| default=0, | |
| help='Port to run the server listener on', | |
| ) | |
| parser.add_argument( | |
| '--inbrowser', action='store_true', help='Open in browser' | |
| ) | |
| parser.add_argument( | |
| '--share', action='store_true', help='Share the gradio UI' | |
| ) | |
| parser.add_argument( | |
| '--headless', action='store_true', help='Is the server headless' | |
| ) | |
| args = parser.parse_args() | |
| UI( | |
| username=args.username, | |
| password=args.password, | |
| inbrowser=args.inbrowser, | |
| server_port=args.server_port, | |
| share=args.share, | |
| listen=args.listen, | |
| headless=args.headless, | |
| ) | |